Weighted ensemble model for image classification.

Talib Iqball, M Arif Wani
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Abstract

The Deep Convolutional Neural Network (DCNN) classification models are being tremendously used across many research fields including medical science for image classification. The accuracy of the model and reliability on the results of the model are the key attributes which determine whether a particular model should be used for a specific application or not. A highly accurate model is always desirable for all applications of machine learning as well as deep learning. This paper presents a DCNN based heterogeneous ensemble approach where all DCNN models can be trained on a single dataset and each model can contribute of towards the final output of the ensemble model. The contribution of each model is weighted according to its individual accuracy on the given dataset. Models with higher accuracy has higher contribution in the final output of ensemble model, whereas the models with lower accuracy has lower contribution. This approach, when tested on two different X-ray images datasets of Covid-19, has confirmed the significant increase in 3-class accuracy as compared to the models in literature.

Abstract Image

用于图像分类的加权集合模型
深度卷积神经网络(DCNN)分类模型在许多研究领域都得到了广泛应用,包括用于图像分类的医学科学。模型的准确性和模型结果的可靠性是决定特定模型是否应用于特定应用的关键属性。对于机器学习和深度学习的所有应用来说,高精度模型总是最理想的。本文提出了一种基于 DCNN 的异构集合方法,所有 DCNN 模型都可以在单个数据集上进行训练,每个模型都可以为集合模型的最终输出做出贡献。每个模型的贡献根据其在给定数据集上的单独准确率进行加权。准确率较高的模型对集合模型的最终输出贡献较大,而准确率较低的模型贡献较小。这种方法在 Covid-19 的两个不同 X 射线图像数据集上进行测试时,证实与文献中的模型相比,3 类准确率有了显著提高。
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